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Gamelan music onset detection using Elman Network

机译:使用Elman Network的Gamelan音乐发作检测

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摘要

Gamelan, one of Indonesia's traditional music instruments, generates signals that have variations in terms of fundamental frequency, amplitude, and signal envelope, due to its handmade construction and playing style. Therefore onset detection which is crucial for gamelan music analysis; undergoes several shortcomings using spectral and temporal features. This paper investigates the implementation of machine learning approach to understand statistical variations contained in gamelan signals which are relevant to onsets. The method uses Elman Network which consists of one hidden layer. Input units came from the power spectrogram and its positive first order difference of the signals as well as the context units from the output of each hidden unit one step back in time. The spectrogram was built using Short-time Fourier Transform and was converted into the log of Mel scale. A fixed threshold was used to select among the local peaks and the result is considered as binary classification of the signal at each time instant. The network was trained on a set of gamelan signals consists of synthetic and real recording data of single instrument playing. The performance gained 93% of F-measure.
机译:加美兰(Gamelan)是印度尼西亚的传统乐器之一,由于其手工制作的结构和演奏风格,其产生的信号在基频,幅度和信号包络方面存在差异。因此,开始检测对于加麦兰音乐分析至关重要。使用频谱和时间特征会遇到一些缺点。本文研究了机器学习方法的实现,以了解加麦兰信号中包含的与发作有关的统计变化。该方法使用由一个隐藏层组成的Elman网络。输入单位来自功率谱图,其信号的正一阶差以及来自每个隐藏单位的输出的上下文单位都向后退一步。使用短时傅立叶变换建立频谱图,并将其转换为梅尔标度的对数。使用固定的阈值在局部峰值之间进行选择,并将结果视为每个时刻信号的二进制分类。该网络接受了一系列Gamelan信号的训练,这些信号包括单个乐器演奏的合成和真实记录数据。性能获得了F-measure的93%。

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